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Jute Pest

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Zenodo2025-05-08 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.15364145
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Description: This dataset comprises 17 distinct classes of agricultural pests, specifically targeting various insects and mites that affect Jute Pest The data is meticulously divided into three partitions: train, validation (val), and test sets, ensuring a robust framework for developing and evaluating machine learning models. Download Dataset Key Features Comprehensive Coverage: The dataset includes images of 17 different pest classes, providing a broad spectrum for pest identification and classification. Structured Partitions: Data is divided into training, validation, and testing sets, facilitating the development of accurate and generalizable models. High-Quality Images: The dataset contains high-resolution images, ensuring the detailed features of each pest are captured, which is crucial for precise classification. Usage This dataset is ideal for: Training Machine Learning Models: Suitable for developing and refining models aimed at pest detection and classification in agricultural settings. Research on Pest Management: A valuable resource for studying pest behavior, distribution, and impact on crops, contributing to better pest management strategies. Educational Purposes: Providing a rich dataset for educational projects in entomology, agriculture, and machine learning. Additional Applications Automated Pest Detection: Enhancing the capabilities of automated systems for early pest detection and management in agriculture. Precision Agriculture: Supporting precision agriculture techniques by enabling targeted pest control measures based on accurate pest identification. Cross-Domain Studies: Facilitating research on the generalization of pest detection models across different crops and agricultural environments. This dataset is sourced from Kaggle.
提供机构:
GTS.AI
创建时间:
2025-05-08
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